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A study of T_2-weighted MR image texture features and diffusion-weighted MR image features for computer-aided diagnosis of prostate cancer

机译:对前列腺癌计算机辅助诊断的T_2加权MR图像纹理特征及扩散加权MR图像特征的研究

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The purpose of this study was to study T_2-weighted magnetic resonance (MR) image texture features and diffusion-weighted (DW) MR image features in distinguishing prostate cancer (PCa) from normal tissue. We collected two image datasets: 23 PCa patients (25 PCa and 23 normal tissue regions of interest [ROIs]) imaged with Philips MR scanners, and 30 PCa patients (41 PCa and 26 normal tissue ROIs) imaged with GE MR scanners. A radiologist drew ROIs manually via consensus histology-MR correlation conference with a pathologist. A number of T_2-weighted texture features and apparent diffusion coefficient (ADC) features were investigated, and linear discriminant analysis (LDA) was used to combine select strong image features. Area under the receiver operating characteristic (ROC) curve (AUC) was used to characterize feature effectiveness in distinguishing PCa from normal tissue ROIs. Of the features studied, ADC 10th percentile, ADC average, and T_2-weighted sum average yielded AUC values (±standard error) of 0.95±0.03, 0.94±0.03, and 0.85±0.05 on the Phillips images, and 0.91±0.04, 0.89±0.04, and 0.70±0.06 on the GE images, respectively. The three-feature combination yielded AUC values of 0.94±0.03 and 0.89±0.04 on the Phillips and GE images, respectively. ADC 10th percentile, ADC average, and T_2-weighted sum average, are effective in distinguishing PCa from normal tissue, and appear robust in images acquired from Phillips and GE MR scanners.
机译:本研究的目的是研究T_2加权磁共振(MR)图像的纹理特征和在从正常组织区分前列腺癌(PCa)扩散加权(DW)MR图像特征。我们收集了的两个图像数据集:与飞利浦MR扫描仪成像的23周前列腺癌的患者(25前列腺癌和感兴趣23个正常组织区域[投资回报]),和30名的PCa患者(41 PCA和26点的正常组织的ROI)与GE MR扫描仪成像。放射科医生通过组织学共识-MR相关会议手动画的ROI与病理学家。许多T_2加权的纹理特征和表观扩散系数(ADC)的功能进行了调查,和线性判别分析(LDA)用于结合选择强图像特征。接收器工作特性(ROC)曲线(AUC)下的面积,使用了与正常组织的ROI区分前列腺癌表征特征的有效性。所研究的功能,ADC 10百分位,ADC平均,和T_2-加权和平均,得到0.95±0.03的AUC值(±标准误差),0.94±0.03,而在菲利普斯图像0.85±0.05,和0.91±0.04,0.89 ±0.04,并在GE图像0.70±0.06,分别。这三个特征组合分别得到对Phillips和GE图像0.94±0.03和0.89±0.04的AUC值。 ADC第10百分位,ADC平均,和T_2-加权和平均,可以有效地从正常组织区分PCA,并出现在从Phillips和GE MR扫描仪获得的图像的鲁棒性。

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